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Optimal power flow considering intermittent solar and wind generation using multi-operator differential evolution algorithm

Karam M. Sallam, Md. Alamgir Hossain, Seham Elsayed, Ripon K. Chakrabortty, Michael J. Ryan, M. A. Abido

2024Electric Power Systems Research34 citationsDOIOpen Access PDF

Abstract

In this paper, a multi-operator differential evolution algorithm (MODE) is proposed to solve the Optimal Power Flow problem, called MODE-OPF. The MODE-OPF utilizes the strengths of more than one differential evolution operator in a single algorithmic framework. Additionally, an adaptive method is proposed to update the number of solutions evolved by each DE operator based on both the diversity of the population and the quality of solutions. This adaptive method has the ability to maintain diversity at the early stages of the optimization process and boost convergence at the later ones. The performance of the proposed MODE-OPF is tested by solving OPF problems for both small and large IEEE bus systems (i.e., IEEE-30 and IEEE-118) while considering intermittent solar and wind power generation . To prove the suitability of this proposed algorithm, its performance has been compared against several state-of-the-art optimization algorithms, where MODE-OPF outperforms other algorithms in all experimental results thereby improving a network’s performance with lower cost. MODE-OPF decreases the total generation cost up to 24.08%, the real power loss up to 6.80% and the total generation cost with emission up to 8.56%.

Topics & Concepts

Differential evolutionOperator (biology)Mathematical optimizationMode (computer interface)Power flowConvergence (economics)Computer scienceElectric power systemAlgorithmPower (physics)MathematicsPhysicsGeneRepressorChemistryOperating systemEconomicsQuantum mechanicsEconomic growthTranscription factorBiochemistryOptimal Power Flow DistributionMicrogrid Control and OptimizationElectric Power System Optimization
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